王七七

verify-tagEuropean Soccer Database Supplementary

football

16

已售 0
13.12MB

数据标识:D17171553125626801

发布时间:2024/05/31

以下为卖家选择提供的数据验证报告:

数据描述

Context

This dataset was built as a supplementary to "[European Soccer Database][1]". It includes data dictionary, extraction of detailed match information previously contains in XML columns.

Content

  • PositionReference.csv: A reference of position x, y and map them to actual position in a play court.
  • DataDictionary.xlsx: Data dictionary for all XML columns in "Match" data table.
  • card_detail.csv: Detailed XML information extracted form "card" column in "Match" data table.
  • corner_detail.csv: Detailed XML information extracted form "corner" column in "Match" data table.
  • cross_detail.csv: Detailed XML information extracted form "cross" column in "Match" data table.
  • foulcommit_detail.csv: Detailed XML information extracted form "foulcommit" column in "Match" data table.
  • goal_detail.csv: Detailed XML information extracted form "goal" column in "Match" data table.
  • possession_detail.csv: Detailed XML information extracted form "possession" column in "Match" data table.
  • shotoff_detail.csv: Detailed XML information extracted form "shotoffl" column in "Match" data table.
  • shoton_detail.csv: Detailed XML information extracted form "shoton" column in "Match" data table.

Acknowledgements

Original data comes from [European Soccer Database][1] by Hugo Mathien. I personally thank him for all his efforts.

Inspiration

Since this is a open dataset with no specific goals / objectives, I would like to explore the following aspects by data analytics / data mining:

  1. Team statistics Including overall team ranking, team points, winning possibility, team lineup, etc. Mostly descriptive analysis.
  2. Team Transferring Track and study team players transferring in the market. Study team's strength and weakness, construct models to suggest best fit players to the team.
  3. Player Statistics Summarize player's performance (goal, assist, cross, corner, pass, block, etc). Identify key factors of players by position. Based on these factors, evaluate player's characteristics.
  4. Player Evolution Construct model to predict player's rating of future.
  5. New Player's Template Identify template and model player for young players cater to their positions and characteristics.
  6. Market Value Prediction Predict player's market value based on player's capacity and performance.
  7. The Winning Eleven Given a season / league / other criteria, propose the best 11 players as a team based on their capacity and performance.
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European Soccer Database Supplementary
16
已售 0
13.12MB
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